Using Real-Time Data to Detect Delays and Improve Customer Communications at New York City Transit

Reddy and his team while at NYC Transit or a TRB publication with authors

February 2021


Authors:
Adam Caspari, Daniel Wood, Angel Campbell, Darian Jefferson, Tuan Huynh, Alla Reddy


Abstracts:

New York City Transit operates one of the world’s largest transit systems, and it can be difficult for the agency’s communications team to keep track of the numerous service disruptions that need to be communicated to customers. This paper introduces the Transit Visualization tool, which processes real-time train location data to automatically identify areas of the system where service may not be living up to customers’ expectations. Specifically, the Transit Visualization is set up to identify areas of the system where trains are operating at lower-than-normal speeds and areas of the system where there are atypically long gaps between trains. Any occurrence of slow speeds or long gaps is assigned a severity level (Moderate, Severe, or Very Severe) to indicate the magnitude of the problem. An overview of any problems the application identifies is shown on an interactive web map, as well as on several easy-to-digest summary tables. The map also displays real-time locations of trains and buses throughout the transit system. The Transit Visualization has been successfully rolled out to the subways communications team and has become a mission-critical tool for communicating delays to customers, especially during the course of the COVID-19 pandemic.

Transportation Research Record Journal of the Transportation Research Board

DOI:10.1177/0361198121994115


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